# Continuous Fourier transform on discrete data using Mathematica?

I have some periodic data, but the amount of data is not a multiple of the period. How can I Fourier analyze this data? Example:

% Let's create some data for testing:

``````data = Table[N[753+919*Sin[x/623-125]], {x,1,25000}]
``````

% I now receive this data, but have no idea that it came from the formula above. I'm trying to reconstruct the formula just from 'data'.

% Looking at the first few non-constant terms of the Fourier series:

``````ListPlot[Table[Abs[Fourier[data]][[x]], {x,2,20}], PlotJoined->True,
PlotRange->All]
``````

shows an expected spike at 6 (since the number of periods is really 25000/(623*2*Pi) or about 6.38663, though we don't know this).

% Now, how do I get back 6.38663? One way is to "convolve" the data with arbitrary multiples of Cos[x].

``````convolve[n_] := Sum[data[[x]]*Cos[n*x], {x,1,25000}]
``````

% And graph the "convolution" near n=6:

``````Plot[convolve[n],{n,5,7}, PlotRange->All]
``````

we see a spike roughly where expected.

% We try FindMaximum:

``````FindMaximum[convolve[n],{n,5,7}]
``````

but the result is useless and inaccurate:

``````FindMaximum::fmmp:
Machine precision is insufficient to achieve the requested accuracy or
precision.

Out[119]= {98.9285, {n -> 5.17881}}
``````

because the function is very wiggly.

% By refining our interval (using visual analysis on the plots), we finally find an interval where convolve[] doesn't wiggle too much:

``````Plot[convolve[n],{n,6.2831,6.2833}, PlotRange->All]
``````

and FindMaximum works:

``````FindMaximum[convolve[n],{n,6.2831,6.2833}] // FortranForm
List(1.984759605826571e7,List(Rule(n,6.2831853071787975)))
``````

% However, this process is ugly, requires human intervention, and computing convolve[] is REALLY slow. Is there a better way to do this?

% Looking at the Fourier series of the data, can I somehow divine the "true" number of periods is 6.38663? Of course, the actual result would be 6.283185, since my data fits that better (because I'm only sampling at a finite number of points).

-

Based on Mathematica help for the Fourier function / Applications / Frequency Identification: Checked on version 7

``````n = 25000;
data = Table[N[753 + 919*Sin[x/623 - 125]], {x, 1, n}];
pdata = data - Total[data]/Length[data];
f = Abs[Fourier[pdata]];
pos = Ordering[-f, 1][[1]]; (*the position of the first Maximal value*)
fr = Abs[Fourier[pdata Exp[2 Pi I (pos - 2) N[Range[0, n - 1]]/n],
FourierParameters -> {0, 2/n}]];
frpos = Ordering[-fr, 1][[1]];

N[(pos - 2 + 2 (frpos - 1)/n)]
``````

returns 6.37072

-
Fantastic! I followed the steps through 'pos' (normalize the data and find the largest Fourier coefficient [constant term being 0 due to normalization]), but what magic is the fr= line doing? That seems to be the crux of what I was looking for. –  barrycarter Dec 22 '10 at 17:14
It is doing a fourier again, on pdata*e^i(...), and uses properties of the Fourier transform to calculate the correction / do the magic. –  j0ker5 Dec 22 '10 at 17:24

Look for the period length using autocorrelation to get an estimate:

``````autocorrelate[data_, d_] :=
Plus @@ (Drop[data, d]*Drop[data, -d])/(Length[data] - d)

ListPlot[Table[{d, autocorrelate[data, d]}, {d, 0, 5000, 100}]]
``````

A smart search for the first maximum away from d=0 may be the best estimate you can get form the available data?

-
I realize that this does not solve the question posed in the title, but it does address finding the number of periods in the sample. –  SEngstrom Dec 16 '10 at 20:02
This is interesting and I'm looking into it. I'm trying to figure out what autocorrelation does and how it works, and whether this helps, and what the answer means. It's nice that you've changed a very wiggly function into a smooth one. –  barrycarter Dec 18 '10 at 1:58
Autocorrelation is correlating the function with itself - good for finding repeating patterns when you don't know the period. It can be efficiently done with Fourier transforms as well. –  SEngstrom Dec 18 '10 at 19:25
perhaps you could help this user better than I did : stackoverflow.com/questions/4466255/… –  belisarius Dec 19 '10 at 4:15
You can use `ListCorrelate` as well for efficiency. –  Szabolcs Dec 14 '11 at 12:15